Artificial intelligence for tuberculosis control: a scoping review of applications in public health.

IF 4.3 3区 医学 Q1 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH
Sonia Menon, Kobto Ghislain Koura
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引用次数: 0

Abstract

Background: Artificial intelligence (AI) has become an important tool in global health, improving disease diagnosis and management. Despite advancements, tuberculosis (TB) remains a public health challenge, particularly in low- and middle-income countries where diagnostic methods are limited. In this scoping review, we aim to examine the potential role of AI in TB control.

Methods: We conducted a search on 25 August 2024 for the past five years, in the PubMed database using keywords related to AI and TB. We included laboratory-based and observational studies focussing on AI applications in TB, excluding non-original research.

Results: There were 34 eligible studies, identifying eight overarching aspects associated with TB control, including active case finding (ACF), triage, pleural effusion diagnosis, multidrug-resistant (MDR) TB and extensively drug-resistant (XDR) TB, differential diagnosis distinguishing active TB from TB infection and other pulmonary communicable diseases, TB and other pulmonary communicable and non-communicable diseases (NCDs), treatment outcome prediction, pleural effusion, and predictions of regional and national trends. AI may transform TB control through enhanced ACF methods and triage, improving detection rates in high-burden regions. With high accuracy, AI may diagnose pleural diagnosis, differentiate TB active and TB infection, TB and non-tuberculous mycobacterial lung disease, COVID-19, and pulmonary NCDs. AI applications may facilitate the prediction of treatment success and adverse effects. Furthermore, AI-driven hotspot mapping may identify undiagnosed TB cases at rates surpassing traditional notification methods. Lastly, predictive modelling and clinical decision support systems may improve the management of MDR-TB.

Conclusions: This scoping review highlights the potential of AI-driven predictions in national TB programmes to enhance diagnostics, track trends, and strengthen public health surveillance. While promising for reducing transmission and supporting TB care in low-resource settings, these models require large-scale validation to ensure real-world applicability, especially for high-risk groups.

人工智能用于结核病控制:公共卫生应用的范围审查。
背景:人工智能(AI)已成为全球健康领域的重要工具,改善了疾病诊断和管理。尽管取得了进展,但结核病仍然是一项公共卫生挑战,特别是在诊断方法有限的低收入和中等收入国家。在这篇范围综述中,我们旨在研究人工智能在结核病控制中的潜在作用。方法:我们于2024年8月25日在PubMed数据库中使用与AI和TB相关的关键词进行了过去五年的搜索。我们纳入了关注人工智能在结核病中的应用的实验室研究和观察性研究,排除了非原创研究。结果:共有34项符合条件的研究,确定了与结核病控制相关的8个总体方面,包括活动性病例发现(ACF)、分诊、胸腔积液诊断、多药耐药(MDR)结核病和广泛耐药(XDR)结核病、活动性结核病与结核病感染和其他肺部传染性疾病的鉴别诊断、结核病和其他肺部传染性和非传染性疾病(NCDs)、治疗结果预测、胸腔积液、以及对地区和国家趋势的预测。人工智能可以通过加强ACF方法和分诊来改变结核病控制,提高高负担地区的检出率。人工智能在胸膜诊断、结核活动性与结核感染、结核与非结核性分枝杆菌肺病、COVID-19、肺部非传染性疾病诊断等方面具有较高的准确性。人工智能应用可能有助于预测治疗成功和不良反应。此外,人工智能驱动的热点地图可能以超过传统通知方法的速度识别未诊断的结核病病例。最后,预测模型和临床决策支持系统可以改善耐多药结核病的管理。结论:这一范围审查强调了国家结核病规划中人工智能驱动的预测在加强诊断、跟踪趋势和加强公共卫生监测方面的潜力。虽然这些模型有望在低资源环境中减少传播和支持结核病治疗,但它们需要大规模验证,以确保现实世界的适用性,特别是对高危人群的适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Global Health
Journal of Global Health PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH -
CiteScore
6.10
自引率
2.80%
发文量
240
审稿时长
6 weeks
期刊介绍: Journal of Global Health is a peer-reviewed journal published by the Edinburgh University Global Health Society, a not-for-profit organization registered in the UK. We publish editorials, news, viewpoints, original research and review articles in two issues per year.
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